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Automatic and efficient pneumothorax segmentation from CT images using EFA-Net with feature alignment function

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AbstractPneumothorax is a condition involving a collapsed lung, which requires accurate segmentation of computed tomography (CT) images for effective clinical decision-making. Numerous convolutional neural network-based methods for medical image segmentation have been proposed, but they often struggle to balance model complexity with performance. To address this, we introduce the Efficient Feature Alignment Network (EFA-Net), a novel medical image segmentation network designed specifically for pneumothorax CT segmentation. EFA-Net uses EfficientNet as an encoder to extract features and a Feature Alignment (FA) module as a decoder to align features in both the spatial and channel dimensions. This design allows EFA-Net to achieve superior segmentation performance with reduced model complexity. In our dataset, our method outperforms various state-of-the-art methods in terms of accuracy and efficiency, achieving a Dice coefficient of 90.03%, an Intersection over Union (IOU) of 81.80%, and a sensitivity of 88.94%. Notably, EFA-Net has significantly lower FLOPs (1.549G) and parameters (0.432M), offering better robustness and facilitating easier deployment. Future work will explore the integration of downstream applications to enhance EFA-Net’s utility for clinicians and patients in real-world diagnostic scenarios. The source code of EFA-Net is available at: https://github.com/tianjiamutangchun/EFA-Net.
Title: Automatic and efficient pneumothorax segmentation from CT images using EFA-Net with feature alignment function
Description:
AbstractPneumothorax is a condition involving a collapsed lung, which requires accurate segmentation of computed tomography (CT) images for effective clinical decision-making.
Numerous convolutional neural network-based methods for medical image segmentation have been proposed, but they often struggle to balance model complexity with performance.
To address this, we introduce the Efficient Feature Alignment Network (EFA-Net), a novel medical image segmentation network designed specifically for pneumothorax CT segmentation.
EFA-Net uses EfficientNet as an encoder to extract features and a Feature Alignment (FA) module as a decoder to align features in both the spatial and channel dimensions.
This design allows EFA-Net to achieve superior segmentation performance with reduced model complexity.
In our dataset, our method outperforms various state-of-the-art methods in terms of accuracy and efficiency, achieving a Dice coefficient of 90.
03%, an Intersection over Union (IOU) of 81.
80%, and a sensitivity of 88.
94%.
Notably, EFA-Net has significantly lower FLOPs (1.
549G) and parameters (0.
432M), offering better robustness and facilitating easier deployment.
Future work will explore the integration of downstream applications to enhance EFA-Net’s utility for clinicians and patients in real-world diagnostic scenarios.
The source code of EFA-Net is available at: https://github.
com/tianjiamutangchun/EFA-Net.

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